一个使用多边形建模的运动识别算法

Pierre Moreau, David Durand, J. Bosche, Michel Lefranc
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引用次数: 1

摘要

人们的动作反映了他们的活动。无论是运动、音乐(演奏乐器)、工作还是再教育,每个领域都有自己的具体动作。然而,其中一些,如体育比赛,需要高精度的动作。工具可用于测量所有部门的运动。首先,传感器被放置在人体的不同位置,这样我们就可以从用户的身体中获取时间数据。在这个作品中,没有使用相机进行动作识别,让用户可以自由地在不同的空间中行走。相当多的算法有助于运动识别,如深度学习,卷积神经网络或动态建模,但在大多数情况下,使用相机。因此,我们的方法包括两个阶段。首先,利用全身传感器对用户进行建模,并保存特征动作。其次,我们仍然使用传感器,对测试人员进行建模,以根据活动找到特征动作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A motion recognition algorithm using polytopic modeling
People’s movements say a lot about their activities. Whether it concerns sports, music (playing an instrument), at work, in re-education, each domain has its own specific moves. However, some of it, such as sports competition, need high-precision movements. Tools are available to measure movements in all sectors. First, sensors are placed on different strategic points on the person’s body that allow us to retrieve temporal data from the body of the user. In this work, no camera is used for motion recognition in order to let the user free to go in different spaces. A considerable number of algorithms help for movement recognition such as deep learning, convolutional neural networks or dynamic modelling, but in most cases, cameras are used. So, our approach consists of two phases. First, model the users thanks to whole-body sensors and save characteristic movements. Second, we still use sensors, to model the test person to find characteristic movements depending on the activity.
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